随机天际线算子

Xuemin Lin, Ying Zhang, W. Zhang, M. A. Cheema
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引用次数: 42

摘要

在许多涉及多标准最优决策的应用程序中,用户可能经常希望在所有最优解决方案中做出个人权衡。作为一个关键特征,多维空间中的天际线通过删除任何(单调的)效用/评分函数不喜欢的所有点,为这种目的提供了最小的候选集;也就是说,无论用户的偏好如何变化,天际线都会删除所有用户不喜欢的对象。在不确定数据应用的驱动下,提出了基于天际线概率的概率天际线模型来检索不确定对象。然而,天际线概率不能捕捉单调效用函数的偏好。基于此,本文提出了一种新的天际线算子,即随机天际线算子。根据期望效用原则,随机天际线保证在所有可能的单调乘法效用函数上提供最优解的最小候选集。与传统的天际线或概率天际线计算相比,我们证明了随机天际线问题在维数上是np完全的。本文提出了一种新颖有效的算法,用于在多维不确定数据上高效地计算随机天际线,如果维数固定,则计算时间为多项式。我们还通过理论分析和实验表明,在某些数据上,随机天际线的大小与常规天际线的大小相当相似。综合实验表明,我们的技术在CPU和IO成本方面都是高效和可扩展的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stochastic skyline operator
In many applications involving the multiple criteria optimal decision making, users may often want to make a personal trade-off among all optimal solutions. As a key feature, the skyline in a multi-dimensional space provides the minimum set of candidates for such purposes by removing all points not preferred by any (monotonic) utility/scoring functions; that is, the skyline removes all objects not preferred by any user no mater how their preferences vary. Driven by many applications with uncertain data, the probabilistic skyline model is proposed to retrieve uncertain objects based on skyline probabilities. Nevertheless, skyline probabilities cannot capture the preferences of monotonic utility functions. Motivated by this, in this paper we propose a novel skyline operator, namely stochastic skyline. In the light of the expected utility principle, stochastic skyline guarantees to provide the minimum set of candidates for the optimal solutions over all possible monotonic multiplicative utility functions. In contrast to the conventional skyline or the probabilistic skyline computation, we show that the problem of stochastic skyline is NP-complete with respect to the dimensionality. Novel and efficient algorithms are developed to efficiently compute stochastic skyline over multi-dimensional uncertain data, which run in polynomial time if the dimensionality is fixed. We also show, by theoretical analysis and experiments, that the size of stochastic skyline is quite similar to that of conventional skyline over certain data. Comprehensive experiments demonstrate that our techniques are efficient and scalable regarding both CPU and IO costs.
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